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Automatic Skin Lesion Segmentation via Iterative Stochastic Region Merging

机译:通过迭代随机区域合并的自动皮肤病变分割

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摘要

An automatic method for segmenting skin lesions in conventional macroscopic images is presented. The images are acquired with conventional cameras, without the use of a dermoscope. Automatic segmentation of skin lesions from macroscopic images is a very challenging problem due to factors such as illumination variations, irregular structural and color variations, the presence of hair, as well as the occurrence of multiple unhealthy skin regions. To address these factors, a novel iterative stochastic region-merging approach is employed to segment the regions corresponding to skin lesions from the macroscopic images, where stochastic region merging is initialized first on a pixel level, and subsequently on a region level until convergence. A region merging likelihood function based on the regional statistics is introduced to determine the merger of regions in a stochastic manner. Experimental results show that the proposed system achieves overall segmentation error of under 10% for skin lesions in macroscopic images, which is lower than that achieved by existing methods.
机译:提出了一种在传统的宏观图像中分割皮肤病变的自动方法。图像是在不使用皮肤镜的情况下使用常规相机获取的。由于诸如照明变化,不规则的结构和颜色变化,头发的存在以及多个不健康皮肤区域的出现等因素,从宏观图像中自动分割皮肤病变是一个非常具有挑战性的问题。为了解决这些因素,采用了一种新颖的迭代随机区域合并方法,从宏观图像中分割出与皮肤病变相对应的区域,其中随机区域合并首先在像素级别上初始化,然后在区域级别上初始化直到收敛。引入基于区域统计的区域合并似然函数,以随机方式确定区域合并。实验结果表明,所提出的系统在宏观图像中对皮肤病变的总体分割误差低于10%,低于现有方法所实现的分割误差。

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